Identifying the parameters of ultracapacitors based on variable forgetting factor recursive least square

COMPEL Pub Date : 2024-09-17 DOI:10.1108/compel-01-2024-0022
Bo Zhang, Xi Chen, Hanwen You, Hong Jin, Hongxiang Peng
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Abstract

Purpose

Ultracapacitors find extensive applications in various fields because of their high energy density and long cycling periods. However, due to the movement of ions and the arrangement patterns on rough/irregular electrode surfaces during the charge and discharge process of ultracapacitors, the parameters of ultracapacitors usually change with the variation of operating conditions. The purpose of this study is to accurately and quickly identify the parameters of ultracapacitors.

Design/methodology/approach

A variable forgetting factor recursive least square (VFFRLS) algorithm is proposed in this paper for online identifying the equivalent series resistance and capacitance C of ultracapacitors. In this work, a real-time error-based strategy is developed to adaptively regulate the value of the forgetting factor of traditional forgetting factor recursive least square (FFRLS) algorithm. The strategy uses the square of the average time autocorrelation estimation of the prior error and the posterior error between the predicted output and the actual output as the adjustment basis of forgetting factors.

Findings

Experiments were conducted using the proposed scheme, and the results were compared with the estimation results obtained by the recursive least squares (RLS) algorithm and the traditional FFRLS algorithm. The maximum root mean square error between the estimated values and actual values for VFFRLS is 3.63%, whereas for FFRLS it is 9.61%, and for RLS it is 19.33%.

Originality/value

By using the proposed VFFRLS algorithm, a relatively high precision can be achieved for the online parameter estimation of ultracapacitors. Besides, the dynamic balance between parameter stability and tracking performance can be validated by dynamically adjusting the forgetting factor.

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基于可变遗忘因子递归最小二乘法确定超级电容器参数
目的 超级电容器因其能量密度高、循环周期长而被广泛应用于各个领域。然而,由于超级电容器在充放电过程中离子的运动以及粗糙/不规则电极表面的排列方式,超级电容器的参数通常会随着工作条件的变化而变化。本文提出了一种可变遗忘因子递归最小二乘法(VFFRLS)算法,用于在线识别超级电容器的等效串联电阻和电容 C。在这项工作中,开发了一种基于误差的实时策略,用于自适应调节传统遗忘因子递推最小二乘法(FFRLS)算法的遗忘因子值。该策略使用预测输出与实际输出之间的先验误差和后验误差的平均时间自相关估计值的平方作为遗忘因子的调节基础。研究结果使用所提出的方案进行了实验,并将实验结果与递归最小二乘法(RLS)算法和传统 FFRLS 算法的估计结果进行了比较。VFFRLS 估计值与实际值之间的最大均方根误差为 3.63%,而 FFRLS 为 9.61%,RLS 为 19.33%。此外,还可以通过动态调整遗忘因子来验证参数稳定性和跟踪性能之间的动态平衡。
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